Literature DB >> 23372623

A novel symbolization scheme for multichannel recordings with emphasis on phase information and its application to differentiate EEG activity from different mental tasks.

Stavros I Dimitriadis1, Nikolaos A Laskaris, Vasso Tsirka, Sofia Erimaki, Michael Vourkas, Sifis Micheloyannis, Spiros Fotopoulos.   

Abstract

UNLABELLED: Symbolic dynamics is a powerful tool for studying complex dynamical systems. So far many techniques of this kind have been proposed as a means to analyze brain dynamics, but most of them are restricted to single-sensor measurements. Analyzing the dynamics in a channel-wise fashion is an invalid approach for multisite encephalographic recordings, since it ignores any pattern of coordinated activity that might emerge from the coherent activation of distinct brain areas. We suggest, here, the use of neural-gas algorithm (Martinez et al. in IEEE Trans Neural Netw 4:558-569, 1993) for encoding brain activity spatiotemporal dynamics in the form of a symbolic timeseries. A codebook of k prototypes, best representing the instantaneous multichannel data, is first designed. Each pattern of activity is then assigned to the most similar code vector. The symbolic timeseries derived in this way is mapped to a network, the topology of which encapsulates the most important phase transitions of the underlying dynamical system. Finally, global efficiency is used to characterize the obtained topology. We demonstrate the approach by applying it to EEG-data recorded from subjects while performing mental calculations. By working in a contrastive-fashion, and focusing in the phase aspects of the signals, we show that the underlying dynamics differ significantly in their symbolic representations. ELECTRONIC SUPPLEMENTARY MATERIAL: The online version of this article (doi:10.1007/s11571-011-9186-5) contains supplementary material, which is available to authorized users.

Keywords:  Math tasks; Multichannel EEG; Symbolic dynamics; Transitions

Year:  2011        PMID: 23372623      PMCID: PMC3253160          DOI: 10.1007/s11571-011-9186-5

Source DB:  PubMed          Journal:  Cogn Neurodyn        ISSN: 1871-4080            Impact factor:   5.082


  16 in total

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2.  Tracking brain dynamics via time-dependent network analysis.

Authors:  Stavros I Dimitriadis; Nikolaos A Laskaris; Vasso Tsirka; Michael Vourkas; Sifis Micheloyannis; Spiros Fotopoulos
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5.  Mode level cognitive subtraction (MLCS) quantifies spatiotemporal reorganization in large-scale brain topographies.

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Authors:  R D Pascual-Marqui; C M Michel; D Lehmann
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9.  Analysis of EEG background activity in Alzheimer's disease patients with Lempel-Ziv complexity and central tendency measure.

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10.  Visualization for understanding of neurodynamical systems.

Authors:  Włodzisław Duch; Krzysztof Dobosz
Journal:  Cogn Neurodyn       Date:  2011-03-26       Impact factor: 5.082

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  7 in total

1.  Transition dynamics of EEG-based network microstates during mental arithmetic and resting wakefulness reflects task-related modulations and developmental changes.

Authors:  S I Dimitriadis; N A Laskaris; S Micheloyannis
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3.  Increase trend of correlation and phase synchrony of microwire iEEG before macroseizure onset.

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4.  Mining Time-Resolved Functional Brain Graphs to an EEG-Based Chronnectomic Brain Aged Index (CBAI).

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5.  Modeling the Switching Behavior of Functional Connectivity Microstates (FCμstates) as a Novel Biomarker for Mild Cognitive Impairment.

Authors:  Stavros I Dimitriadis; María Eugenia López; Fernando Maestu; Ernesto Pereda
Journal:  Front Neurosci       Date:  2019-06-11       Impact factor: 4.677

6.  A Data-Driven Measure of Effective Connectivity Based on Renyi's α-Entropy.

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7.  A novel biomarker of amnestic MCI based on dynamic cross-frequency coupling patterns during cognitive brain responses.

Authors:  Stavros I Dimitriadis; Nikolaos A Laskaris; Malamati P Bitzidou; Ioannis Tarnanas; Magda N Tsolaki
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